4.5 Article

A variational approach to intensity approximation for remote sensing images using dynamic neural networks

Journal

EXPERT SYSTEMS
Volume 20, Issue 4, Pages 163-170

Publisher

BLACKWELL PUBL LTD
DOI: 10.1111/1468-0394.00240

Keywords

neural networks; dynamic neural networks; Hopfield neural networks; intelligent systems; image processing

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In remote sensing image processing, image approximation, or obtaining a high-resolution image from a corresponding low-resolution image, is an ill-posed inverse problem. In this paper, the regularization method is used to convert the image approximation problem into a solvable variational problem. In regularization, the constraints on smoothness and discontinuity are considered; and the original ill-posed problem is thereby converted to a well-posed optimization problem. In order to solve the variational problem, a Hopfield-type dynamic neural network is developed. This neural network possesses two states that describe the discrepancy between a pixel and adjacent pixels, the intensity evolution of a pixel and two kinds of corresponding weights. Based on the experiment in this study with a Landsat TM image free of added noise and a noisy image, the proposed approach provides better results than other methods. The comparison shows the feasibility of the proposed approach.

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